Spaces:
Runtime error
Runtime error
| import gradio as gr | |
| import os | |
| import numpy as np | |
| os.system("pip install pdfminer.six rank_bm25 torch transformers") | |
| from gradio.mix import Series | |
| #import re | |
| from rank_bm25 import BM25Okapi | |
| import string | |
| import torch | |
| from transformers import pipeline | |
| import pdfminer | |
| from pdfminer.high_level import extract_text | |
| len_doc = 500 | |
| overlap = 15 | |
| param_top_k_retriver = 15 | |
| param_top_k_ranker = 3 | |
| def read_pdf(file): | |
| text = extract_text(file.name) | |
| # Split text into smaller docs | |
| docs = [] | |
| i = 0 | |
| while i < len(text): | |
| docs.append(text[i:i+len_doc]) | |
| i = i + len_doc - overlap | |
| return docs | |
| # We use BM25 as retriver which will do 1st round of candidate filtering based on word based matching | |
| def bm25_tokenizer(text): | |
| stop_w = ['a', 'the', 'am', 'is' , 'are', 'who', 'how', 'where', 'when', 'why', 'what'] | |
| tokenized_doc = [] | |
| for token in text.lower().split(): | |
| token = token.strip(string.punctuation) | |
| if len(token) > 0 and token not in stop_w: | |
| tokenized_doc.append(token) | |
| return tokenized_doc | |
| def retrieval(query, top_k_retriver, docs, bm25_): | |
| bm25_scores = bm25_.get_scores(bm25_tokenizer(query)) | |
| top_n = np.argsort(bm25_scores)[::-1][:top_k_retriver] | |
| bm25_hits = [{'corpus_id': idx, | |
| 'score': bm25_scores[idx], | |
| 'docs':docs[idx]} for idx in top_n if bm25_scores[idx] > 0] | |
| bm25_hits = sorted(bm25_hits, key=lambda x: x['score'], reverse=True) | |
| return bm25_hits | |
| def qa_ranker(query, docs_, top_k_ranker, qa_model): | |
| ans = [] | |
| for doc in docs_: | |
| answer = qa_model(question = query, | |
| context = doc) | |
| answer['doc'] = doc | |
| ans.append(answer) | |
| return sorted(ans, key=lambda x: x['score'], reverse=True)[:top_k_ranker] | |
| def cstr(s, color='black'): | |
| return "<text style=color:{}>{}</text>".format(color, s) | |
| def cstr_bold(s, color='black'): | |
| return "<text style=color:{}><b>{}</b></text>".format(color, s) | |
| def cstr_break(s, color='black'): | |
| return "<text style=color:{}><br>{}</text>".format(color, s) | |
| def print_colored(text, start_idx, end_idx, confidence): | |
| conf_str = '- Confidence: ' + confidence | |
| a = cstr(' '.join([text[:start_idx], \ | |
| cstr_bold(text[start_idx:end_idx], color='blue'), \ | |
| text[end_idx:], \ | |
| cstr_break(conf_str, color='grey')]), color='black') | |
| return a | |
| def final_qa_pipeline(file, query, model_nm): | |
| docs = read_pdf(file) | |
| tokenized_corpus = [] | |
| for doc in docs: | |
| tokenized_corpus.append(bm25_tokenizer(doc)) | |
| bm25 = BM25Okapi(tokenized_corpus) | |
| top_k_retriver, top_k_ranker = param_top_k_retriver, param_top_k_ranker | |
| lvl1 = retrieval(query, top_k_retriver, docs, bm25) | |
| qa_model = pipeline("question-answering", | |
| #model = "deepset/minilm-uncased-squad2") | |
| model = "deepset/"+ str(model_nm)) | |
| if len(lvl1) > 0: | |
| fnl_rank = qa_ranker(query, [l["docs"] for l in lvl1], top_k_ranker,qa_model) | |
| top1 = print_colored(fnl_rank[0]['doc'], fnl_rank[0]['start'], fnl_rank[0]['end'], str(np.round(100*fnl_rank[0]["score"],1))+"%") | |
| if len(lvl1)>1: | |
| top2 = print_colored(fnl_rank[1]['doc'], fnl_rank[1]['start'], fnl_rank[1]['end'], str(np.round(100*fnl_rank[1]["score"],1))+"%") | |
| else: | |
| top2 = "None" | |
| return (top1, top2) | |
| else: | |
| return ("No match","No match") | |
| examples = [ | |
| ] | |
| iface = gr.Interface( | |
| fn = final_qa_pipeline, | |
| inputs = [gr.inputs.File(label="input pdf file"), gr.inputs.Textbox(label="Question:"), gr.inputs.Dropdown(choices=["minilm-uncased-squad2","roberta-base-squad2"],label="Model")], | |
| outputs = [gr.outputs.HTML(label="Top 1 answer"), gr.outputs.HTML(label="Top 2 answer")], | |
| examples=examples, | |
| theme = "grass", | |
| title = "Is your claim covered?", | |
| description = "Check if your insurance contract covers your claim. \nSimply upload your insurance contract pdf and ask a question describing your claim." | |
| ) | |
| iface.launch(enable_queue = True) | |
| gr.Interface.load("models/deepset/roberta-base-squad2").launch() |